Semi-Supervised Deep Learning for Multi-Tissue Segmentation from Multi-Contrast MRI
Syed Muhammad Anwar, Ismail Irmakci, Drew A. Torigian, Sachin, Jambawalikar, Georgios Z. Papadakis, Can Akgun, Mehmet Akcakaya, Ulas, Bagci

TL;DR
This paper introduces a semi-supervised deep learning method for accurate multi-tissue segmentation in multi-contrast thigh MRI scans, outperforming existing methods and reducing the need for extensive labeled data.
Contribution
It presents the first end-to-end semi-supervised deep learning framework for multi-tissue segmentation in multi-contrast thigh MRI scans, enhancing accuracy and efficiency.
Findings
Achieved high dice scores for tissue segmentation, e.g., 97.52% for muscle.
Utilized both labeled and unlabeled data effectively.
Outperformed current state-of-the-art segmentation methods.
Abstract
Segmentation of thigh tissues (muscle, fat, inter-muscular adipose tissue (IMAT), bone, and bone marrow) from magnetic resonance imaging (MRI) scans is useful for clinical and research investigations in various conditions such as aging, diabetes mellitus, obesity, metabolic syndrome, and their associated comorbidities. Towards a fully automated, robust, and precise quantification of thigh tissues, herein we designed a novel semi-supervised segmentation algorithm based on deep network architectures. Built upon Tiramisu segmentation engine, our proposed deep networks use variational and specially designed targeted dropouts for faster and robust convergence, and utilize multi-contrast MRI scans as input data. In our experiments, we have used 150 scans from 50 distinct subjects from the Baltimore Longitudinal Study of Aging (BLSA). The proposed system made use of both labeled and unlabeled…
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